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Stability of asynchronous firing states in networks with synaptic adaptation

机译:突触自适应网络中异步触发状态的稳定性

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We construct a mean field theory for low-rate asynchronous firing states in networks consisting of excitatory and inhibitory populations of integrate-and-fire neurons with synaptic depression or facilitation. The theory is exact when each neuron receives input from K randomly chosen ones, with l K N, where N is the total number of neurons. Changes in firing rates produce changes in synaptic strengths and vice-versa, potentially leading to in- stabilities. We prove that depression of synapses within a population (excitatory or inhibitory) always tends to stabilize the asynchronous state against such fluctuations, while depression acting between populations destabilizes it. Facilitation has the opposite effect.
机译:我们构建了一个低速非同步激发态网络的平均场理论,该网络由具有突触抑制或促进作用的整合和激发神经元的兴奋性和抑制性种群组成。当每个神经元从K个随机选择的神经元接收输入,其中l K N,其中N是神经元的总数时,该理论是正确的。射击频率的变化会引起突触强度的变化,反之亦然,从而可能导致不稳定。我们证明,群体中的突触抑制(兴奋性或抑制性)总是趋于稳定异步状态以抵御这种波动,而群体之间的抑制作用则使不稳定状态不稳定。促进作用相反。

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